Logo
job logo

IT engineer data lakehouse - Sales & Finance

Continental, New Bremen, Ohio, United States

Save Job

Job Description

Design, develop, and operate scalable and maintainable data pipelines in the Azure Databricks environment

Develop all technical artefacts as code, implemented in professional IDEs, with full version control and CI/CD automation

Enable data-driven decision-making in Sales & Finance by ensuring high data availability, quality, and reliability

Implement data products and analytical assets using software engineering principles in close alignment with business domains and functional IT

Apply rigorous software engineering practices such as modular design, test-driven development, and artifact reuse in all implementations

Global delivery footprint; cross-functional data engineering support across Sales & Finance domains

Collaboration with business stakeholders, functional IT partners, product owners, architects, ML/AI engineers, and Power BI developers

Agile, product-team structure embedded in an enterprise-scale Azure environment

Main Tasks

Design scalable batch and streaming pipelines in Azure Databricks using PySpark and/or Scala

Implement ingestion from structured and semi-structured sources (e.g., SAP, APIs, flat files)

Build bronze/silver/gold data layers following the defined lakehouse layering architecture & governance

Implement use-case driven dimensional models (star/snowflake schema) tailored to Sales & Finance needs

Ensure compatibility with reporting tools (e.g., Power BI) via curated data marts and semantic models

Implement enterprise-level data warehouse models (domain-driven 3NF models) for Sales & Finance data, closely aligned with data engineers for other business domains

Develop and apply master data management strategies (e.g., Slowly Changing Dimensions)

Develop automated data validation tests using frameworks

Monitor pipeline health, identify anomalies, and implement quality thresholds

Establish data quality transparency by defining and implementing meaningful data quality rules with source system and business stakeholders and implementing related reports

Develop and structure pipelines using modular, reusable code in a professional IDE

Apply test-driven development (TDD) principles with automated unit, integration, and validation tests

Integrate tests into CI/CD pipelines to enable fail‑fast deployment strategies

Commit all artifacts to version control with peer review and CI/CD integration

Work closely with Product Owners to refine user stories and define acceptance criteria

Translate business requirements into data contracts and technical specifications

Participate in agile events such as sprint planning, reviews, and retrospectives

Document pipeline logic, data contracts, and technical decisions in markdown or auto‑generated docs from code

Align designs with governance and metadata standards (e.g., Unity Catalog)

Track lineage and audit trails through integrated tooling

Profile and tune data transformation performance

Reduce job execution times and optimize cluster resource usage

Refactor legacy pipelines or inefficient transformations to improve scalability

Additional Information The well‑being of our employees is important to us. That's why we offer exciting career prospects and support you in achieving a good work‑life balance with additional benefits such as:

Training opportunities

Mobile and flexible working models

Sabbaticals

and much more...

Sounds interesting for you? Click here to find out more.

Diversity, Inclusion & Belonging are important to us and make our company strong and successful. We offer equal opportunities to everyone – regardless of age, gender, nationality, cultural background, disability, religion, ideology or sexual orientation.

Ready to drive with Continental? Take the first step and fill in the online application.

Qualifications Degree in Computer Science, Data Engineering, Information Systems, or related discipline. Certifications in software development and data engineering (e.g., Databricks DE Associate, Azure Data Engineer, or relevant DevOps certifications).

3–6 years of hands‑on experience in data engineering roles in enterprise environments. Demonstrated experience building production‑grade codebases in IDEs, with test coverage and version control.

Proven experience in implementing complex data pipelines and contributing to full lifecycle data projects (development to deployment) Experience in at least one business domain: Sales & Finance or a comparable field

Experience working in international teams across multiple time zones and cultures, preferably with teams in India, Germany, and the Philippines.

Company Description Continental develops pioneering technologies and services for sustainable and connected mobility of people and their goods. Founded in 1871, the technology company offers safe, efficient, intelligent, and affordable solutions for vehicles, machines, traffic and transportation. In 2023, Continental generated sales of €41.4 billion and currently employs around 200 000 people in 56 countries and markets.

Guided by the vision of being the customer’s first choice for material‑driven solutions, the ContiTech group sector focuses on development competence and material expertise for products and systems made of rubber, plastics, metal, and fabrics. These can also be equipped with electronic components in order to optimize them functionally for individual services. ContiTech’s industrial growth areas are primarily in the areas of energy, agriculture, construction, and surfaces. In addition, ContiTech serves the automotive and transportation industries as well as rail transport.

The IT Digital and Data Services Competence Center of ContiTech caters to all the Business Areas in ContiTech and is responsible for other areas of Data & Analytics, Web and Mobile Software Development and AI.

The team for Data services specializes in all platforms, business applications and products in the domain of data and analytics, covering the entire spectrum including AI, machine learning, data science, data analysis, reporting and dashboarding.

#J-18808-Ljbffr